4.1 Review

Advances of machine learning in multi-energy district communities? mechanisms, applications and perspectives

Journal

ENERGY AND AI
Volume 10, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.egyai.2022.100187

Keywords

Machine learning; Renewable energy; Energy storage; Demand-side management; Dynamic power Dispatch; Techno-economic-environmental performance

Funding

  1. Hong Kong University of Science and Technology
  2. Hong Kong University of Science and Technology (Guangzhou) [HZQB-KCZYB-2020083]
  3. Project of Hetao Shenzhen-Hong Kong Science and Technology Innovation Cooperation Zone
  4. [G0101000059]

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This study provides a comprehensive review on the application of artificial intelligence in carbon-neutral district communities. The results show that machine learning techniques have been widely used in energy supply, energy storage, district energy demands, and energy management. The research also reveals the trend of combining renewable energy supply and energy storage in low-carbon energy systems.
Energy paradigm transition towards the carbon neutrality requires combined and continuous efforts in cleaner power production, advanced energy storages, flexible district energy demands and energy management strate- gies. Applications of cutting-edge machine learning techniques can improve the system reliability with advanced fault detection and diagnosis (FDD, automation with agent-based reinforcement learning, flexibility with model predictive controls, and so on. In this study, a comprehensive review on artificial intelligence applications in carbon-neutral district community, has been conducted, from perspectives of energy supply, energy storage, district demands and energy management. Classifications and underlying mechanisms on ML techniques have been demonstrated, including supervised, unsupervised, reinforcement and deep learning. Afterwards, practical applications of ML have been reviewed, in respect to renewable energy supply, hybrid energy storages, district energy demand and advanced energy management. Results indicate that, supervised learning was mainly applied in classification and regression, and unsupervised learning was mainly applied in clustering. The reinforcement learning is mainly applied in on-line optimal scheduling for building energy management. With respect to clean energy supply, ML in solar and wind energy systems mainly include solar irradiance forecasting, wind resource forecasting, PV power prediction, maximum power point tracking (MPPT) for smart control, fault detection and diagnosis. ML in fuel cells mainly includes performance prediction, material selection, combination and so on. Furthermore, in respect to hybrid energy storages, ML in electrochemical battery includes dynamic thermal/ electrical behavior, battery sizing and optimization, state-of-charge prediction, battery lifetime estimation, fault detection and diagnosis analysis. ML in sensible energy storages mainly include load prediction and storage capacity sizing, dynamic scheduling for cost saving, thermal stratification analysis and dynamic performance prediction. Advances in energy management with ML mainly include dispatch on stochastic and intermittent renewable power, microgrid adaptive control, smart energy trading with controls and decision-marking. Research tendency over the recent past several years indicates that, critical areas for low-carbon energy sys- tems transit from the only renewable systems (59.4% in 2016) towards both renewable energy supply and energy storages (35.1% and 34.1%, respectively), such as battery, capacitors/supercapacitors, sensible/latent heat storages, compressed air storage and hydrogen storage. This study can provide a holistic overview and in-depth thinking on artificial intelligence in the carbon-neutral district transition.

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